BACKGROUND OF THE INVENTION
[0001] This invention relates generally to air data systems that are incorporated into air
vehicles, and more specifically, to methods and systems for using ratiometric characterizations
to improve accuracy of air data systems.
[0002] Air data parameters are important in maintaining a high quality of performance of
air vehicles. Three air data parameters include altitude, velocity, and mach number.
[0003] Pressure altitude is a function of static pressure and is used to determine a quantity
of flight conditions. For example, a decrease in pressure is typically indicative
of an increase in altitude. Also, as pressure decreases, air density decreases. Air
density is also a function of static air temperature. For example, if one plane is
flying at sea level and one is flying at 10000 feet they both could be indicating
300 knots but the higher vehicle is actually flying faster. This phenomenon becomes
more pronounced at higher altitudes.
[0004] Velocity is a function of impact pressure (i.e. the total pressure minus the static
pressure). Velocity is the most common parameter used to control air traffic and other
aircraft maneuvers. Velocity, as well as air density, is used to control fuel consumption
and required power needed to fly at cruise conditions.
[0005] The mach number is the ratio of air vehicle speed and the speed of sound. As the
air vehicle moves through the air, the air molecules near the air vehicle are disturbed
and move around the air vehicle. If the air vehicle is moving at a relatively low
speed, for example, less than 250 mph, the density of the air flow remains relatively
constant.
[0006] At higher air vehicle speeds, some of the energy from the air vehicle compresses
the air and locally changes a density of the air. This compressibility effect alters
the amount of the resulting force on the air and becomes more important as speed increases.
Near and beyond the speed of sound, about 330 meters per second or 760 mph at sea
level, small disturbances in the flow are transmitted to other locations. Such disturbances
have a constant entropy. For example, a sharp disturbance may generate a shock wave
that could affect both the lift and drag of the air vehicle. As a result, the mach
number is an important air data parameter that is used to control the performance
of the air vehicle. The mach number also changes as a function of altitude.
[0007] Some air data systems, for example, those utilized in high performance aircraft are
highly accurate, and thus relatively expensive. However, for lower cost air vehicles
such as missiles, drones, and unmanned aerial vehicles (UAVs), accuracy of the air
data system, while important, may be lessened in order to meet cost constraints that
may be associated with such air vehicles. However, it is difficult to even meet moderate
accuracy requirements for air data systems that incorporate low cost commercial sensors
because of the sensitivity of such sensors to temperature and pressure.
BRIEF SUMMARY OF THE INVENTION
[0008] In one aspect, a method for characterizing pressure sensors to improve accuracy in
an air data system is provided. The sensors include at least one static pressure sensor
and at least one total pressure sensor. The method comprises characterizing the static
pressure sensor and the total pressure sensor to determine a static pressure sensor
error, Pse, and a total pressure sensor error, Pte, and performing a ratiometric characterization
to reference the total pressure, Ptt, to the static pressure sensor error, Pse, where
Ptt is the actual total pressure Pta, plus a total pressure error, Pte.
[0009] In another aspect, an air data system is provided that comprises at least one total
pressure sensor, at least one static pressure sensor, and a processor. The processor
is configured to receive pressures and temperatures measured by the sensors, and further
configured to perform a ratiometric characterization which references a total pressure,
Ptt, to a static pressure sensor error, Pse.
[0010] In still another aspect, a method for utilizing total and static pressure sensors
in the determination of one or more air data parameters for an air vehicle is provided.
The method comprises measuring a static pressure and a total pressure, adjusting the
total pressure measurement based on a static pressure sensor error, and utilizing
the referenced total pressure measurement and static pressure measurement to determine
the air data parameters.
[0011] In yet another aspect, a processor is provided that is configured to characterize
static pressure sensor measurements and total pressure sensor measurements to determine
a static pressure sensor error, Pse, and a total pressure sensor error, Pte, as well
as perform a ratiometric characterization to adjust total pressure measurements, Ptt,
based on the static pressure sensor error, Pse, where Ptt is an actual total pressure,
Pta, plus a total pressure error, Pte.
BRIEF DESCRIPTION OF THE DRAWINGS
[0012]
Figure 1 is a block diagram of an air data system attached to a testing device configured
to provide precision pressures to sensors of the air data system.
Figure 2 is a chart illustrating total pressure and static pressure errors as a function
of pressure and temperature after an initial sensor characterization.
Figure 3 is a plot illustrating mach number error against mach number.
Figure 4 is a plot illustrating the mach number error against the mach number in RMS.
Figure 5 is a chart illustrating a reduction in mach number error after a ratiometric
second characterization process.
Figure 6 is a chart illustrating accuracy of a calibrated velocity over a range of
velocities.
Figure 7 is a chart illustrating the improvement in the accuracy of the calibrated
velocity after a ratiometric second characterization process is applied.
Figure 8 is a flowchart illustrating a process for characterizing pressure sensor
errors.
DETAILED DESCRIPTION OF THE INVENTION
[0013] Figure 1 is a block diagram illustrating a sensor characterization system 10 for
testing and mechanizing an air data system including an air data computer 12. The
mechanization, in part, is the utilization of a ratiometric second characterization
such that errors in the total pressure are adjusted to match the errors in the static
pressure such that the errors essentially are the same for each pressure (total, static).
As a result, the errors cancel one another resulting in a much higher accuracy (i.e.
especially at low mach numbers and velocity conditions) for air data parameters originating
from the sensors.
[0014] Air data systems typically incorporate two pressure sensors. An indicated total pressure
(Pti) sensor is used to measure pressure in the line-of-flight of the air vehicle,
and an indicated static pressure (Ps) sensor is used to measure ambient (static) pressure.
The difference between the two pressures (i.e. Pti - Psi) is the impact pressure or
the pressure caused by the air vehicle as it travels through an air mass. Stated differently,
the difference in the pressures is the total force per unit area exerted by air on
a surface of the air vehicle. From the pressure difference, a calibrated velocity
(Vc), and a true velocity (Vt) can be determined. From the pressure ratio, (i.e. Pti/Psi)
a mach number (M) can be determined. If a static temperature of the air outside of
the air vehicle is measured and calibrated, then a free air temperature (Tfat), an
air density (σ), and a true velocity may be determined.
[0015] A large portion of the errors for M, Vc, and Vt are related to the accuracy and stability
of the total and static pressure sensors along with a sophistication of the characterizations
of these sensors. With regard to sensor accuracy and stability, sensors that are typically
utilized in current air data systems, for example, piezo-resistive silicon sensors,
are very stable as a function of time. Such sensors typically include a piezo-resisitve
bridge that measure temperature at a pressure sensing bridge of the sensor. However,
these sensors are not as accurate as desired for utilization in air data systems.
Therefore, to utilize such sensors in air data systems, the sensors are characterized.
Characterization, as used herein, is the modeling of sensors and associated electronics
as a function of pressure and temperature along with the generation of a characterization
algorithm. Some known characterization algorithms are complex. For example, one known
characterization algorithm can contain up to 55 polynomial terms which may include
sixth to ninth order polynomials.
[0016] Inaccuracies due to uncharacterized sensors can range from five percent to ten percent
of the full scale pressure range. For example, if the pressure range is one to 43
in Hg (inches of mercury), then the accuracy at any given point within that range
may only be ± 2.1 in Hg (a 5% inaccuracy). Accuracy requirements for certain known
air data systems include accuracies of less than 0.02% of full scale or ± 0.0084 in
Hg. This accuracy is accomplished by characterizing the sensors and their associated
electronics as indicated above. For subsonic applications, the same type of pressure
sensor is utilized for both the static pressure sensor and the total pressure sensor.
One example of desired accuracies for the pressure measurements are: Ps ± 0.0084 in
Hg and Pt ± 0.0084 in Hg. For supersonic conditions, the total pressure sensor range
can be 90 in Hg or higher and the resulting 0.02% of full scale accuracy would be
Pt ± 0.018 in Hg.
[0017] The two sensors for Pt and Ps, are typically treated as independent and as such are
characterized separately. However, after characterization of the sensors, there are
remaining errors, for example:
Pst = Psa + Pse, where Pst = total static pressure, Psa = actual or ambient static
pressure, and Pse = static pressure error, and
Ptt = Pta + Pte, where Ptt = total pressure total, Pta = actual or ambient total pressure,
and Pte = total pressure error, resulting in
Ptr = Pta + Pte + (Pse - Pte) = Pta + Pse, where Ptr = Ptt, and is ratiometric characterized.
[0018] For a pressure range of 1 to 43 in Hg, for static pressure, Ps, and total pressure,
Pt, the maximum and minimum error tolerances, 0.02% of full scale, are:

[0019] For

the worst case error is:

[0020] For calibrated Airspeed (CAS or Vc):

and the worst case error is:

where; a
o is the constant for the speed of sound at sea level and Pso is a standard day static
pressure constant.
[0021] For true Airspeed:
True Airspeed = TAS = Vt = 38.96785 × M × SAT0.5 , and the worst case error for true airspeed reflects the worst case mach number
above. SAT, sometimes referred to as Tfat, is an ambient air temperature of the free
undisturbed volume of air around the vehicle. The SAT parameter requires separate
sensing and characterization with respect to the mach number parameter noted above
and is not equivalent to the temperature at the bridge of the pressure sensing element.
In one embodiment, SAT is in Kelvin and is determined by using a total air temperature
sensor, typically co-located with the total pressure sensor.
[0022] Static pressure and total pressure errors are typically independent, and as such,
worst case errors or even RMS errors are used to determine compliance to air data
specifications. However, if the errors of static pressure and total pressure were
not independent, for example, such that total pressure errors would be in the same
direction and amount as static pressure errors, then any resulting errors for the
mach number (M), the calibrated velocity (Vc), and the true velocity (Vt) would balance
out. This balancing out is reflected in the ratiometric total pressure (Ptr) term
shown in Figure 1. Balancing out of the errors for M, Vc, and Vt can be done by conducting
a second ratiometric characterization where Pte is referenced to Pse and Pse is unchanged.
The barometric altitude is proportional to static pressure and therefore, the Pst
accuracy is to be maintained.
[0023] As illustrated in Figure 1, to implement a ratiometric second characterization of
the pressure sensors, an algorithm is included within software module 20 of air data
computer 12. In one embodiment, the algorithm is executed during characterization
of the sensors, the sensors being interface to test equipment which provides accurate
pressure and temperature inputs to these sensors.
[0024] Referring specifically to Figure 1, sensor characterization system 10 includes an
air data computer 12 that includes a software module 20 that provides the above described
second characterization. System 10 further includes precision pressure test equipment
30 capable of applying various accurate pressures to the pressure sensors for the
air data system. More specifically, an absolute static pressure sensor 40 receives
an actual static pressure (Psa) from precision pressure test equipment 30, and outputs
a static pressure (Ps) and a static temperature (Ts) to a dual channel delta sigma
converter 42. An absolute total pressure sensor 50 receives an actual total pressure
(Pta) from precision pressure test equipment 30, and outputs a total pressure (Pt)
and a total temperature (Tt) to a dual channel delta sigma converter 52.
[0025] Delta sigma converters 42 and 52 are interfaced to microcontroller 60 which is further
configured with software module 20. In an alternative embodiment, delta sigma converters
42 and 52 are incorporated within microcontroller 60. In either embodiment, delta
sigma converters 42 and 52 are configured to convert pressure and temperature data
from static pressure sensor 40 and total pressure sensor 50 into a format to be received
by microcontroller 60. Also interfaced to microcontroller 60, in the embodiment illustrated,
are EEPROM 62, RAM 64, and serial EEPROM 66.
[0026] The total pressure and static pressure error terms (Pte and Pse respectively) are
generated via a first characterization within software module 20. The first characterization
includes varying temperature and pressure combinations using precision pressure test
equipment 30 (i.e., for example, twenty different pressures and at each pressure,
ten different temperature settings).
[0027] To perform the first characterization as described above, pressures and temperatures
from each sensor 40 and 50, each of which includes a thermal bridge, are stored by
microcontroller 60, for example, in RAM 64 or EEPROM 62. By comparing the input settings
Psa and Pta from pressure test equipment 30 with the first characterization results
Pst and Ptt, as calculated by microcontroller 60, a matrix of total pressure and static
pressure error terms (Pte and Pse respectively) can be generated as a function of
pressure and temperature and then stored in memory.
[0028] With the Pse and Pte error terms matrix having been calculated, an algorithm can
be derived that provides a continuous plot of the Pse and Pte error terms as a function
of both pressure and temperature. Figure 2 is an example plot of total pressure and
static pressure error terms (Pte and Pse respectively) as a function of pressure and
temperature. More specifically, a ratiometric second characterization algorithm can
be implemented to transition Ptt (total pressure including the total pressure error)
to Ptr (the ratiometric characterized total pressure). Ptr now contains the static
pressure error, Pse. As an example, it is assumed that the initial characterization
has been conducted and stored within one of the memories 62, 64, and 66 interfaced
with microcontroller 60 within air data computer 12. Figure 2 shows error plots (Pse
and Pte) at a specific temperature and are stored, for example, in EEPROM 62.
[0029] A ratiometric second characterization conducted, for example, at a 10,000 foot altitude,
a speed (mach number) of Mach 0.2, and at a 71°C temperature as measured from the
sensor temperature bridge, results in an ambient static pressure (Psa) of 20.576985
in Hg (due to altitude), and ambient total pressure (Pta) of 21.1589257 in Hg (due
to the mach number and altitude).
[0031] The result is that since the errors for Pst and Ptr are the same, they cancel one
another out when determining the mach number (M), the calibrated velocity (Vc), and
the true velocity (Vt).
[0032] A series of simulation plots are shown in Figures 3-7 for the mach number and the
calibrated velocity. Referring to Figure 3, it is illustrated how the mach error decreases
as the mach number increases. Figure 4 show the mach error against the mach number
plotted in RMS. Figures 3 and 4 further illustrate problems at low mach numbers in
meeting the accuracy requirements. Figure 5 is a chart illustrating the reduction
in mach number error after the ratiometric second characterization process described
above has been applied, and illustrates the benefits thereof.
[0033] Figure 6 is a chart illustrating that the accuracy of the calibrated velocity, Vc,
increases as velocity increases and that the error is relatively large at low speeds.
Figure 7 is a chart illustrating the improvement in the accuracy of the calibrated
velocity after the ratiometric second characterization is applied. Again, significant
accuracy improvement in the calibrated velocity, Vc, is obtained.
[0034] Figure 8 is a flowchart 100 illustrating the above described ratiometric characterization
process. For a set of pressure sensors coupled to an air data computer, various pressures
and temperatures are applied 102 to the pressure sensors and the resulting pressure
and temperature readings (e.g. sensor outputs) are stored in memory of the air data
computer 12. The sensors are then characterized 104 as functions of pressure and temperature
and the characterizations are stored in memory of the air data computer 12. A second
characterization is then performed 106, where a total pressure error resulting from
the characterization 104 is referenced to a static pressure error resulting from the
characterization 104 and described as a ratiometric total pressure according to:

[0035] For high performance air data systems, a ratiometric second characterization of the
static and total pressure sensors result in mach number and velocity measurements
improve significantly and enable meeting much tighter accuracy requirements. For low
cost systems, lower accuracy/lower cost commercial sensors can be used and a ratiometric
second characterization provides that moderate accuracy requirements can be met which
allows for more tolerance for drift over lifetime, for example, while in long term
storage environments.
[0036] While the invention has been described in terms of various specific embodiments,
those skilled in the art will recognize that the invention can be practiced with modification
within the spirit and scope of the claims.